University of Tuscia, 01100, Viterbo, Italy.
Sci Rep. 2022 May 30;12(1):9010. doi: 10.1038/s41598-022-12985-w.
This study was designed to explore learning experiences of university students with dyslexia and factors that could contribute to their success in the university career. Although, great efforts have been made to diagnose dyslexia and to mitigate its effects at primary and secondary school, little has been done at the university level in particular in the Italian context. Indeed in the university context, the availability and possibility to use of support tools, that enable the student to achieve educational success, is still not sufficiently adequate. In this paper we used bivariate association tests and cluster analysis, in order to identify the most suitable compensatory tools and support strategies that can facilitate the students' performance in higher education. The data were obtained through the voluntary participation of Italian students, enrolled in a bachelor degree course, with certified diagnosis of dyslexia. Six groups of students were identified from the cluster analysis, defining specific support tools and learning strategies for each group. Furthermore, through the creation of these six groups, it was possible to describe "profiles" that highlight the risk factors (late diagnosis) and-or protection factors (such as associations, support from friends and family) in analyzing the academic career of students with dyslexia. Therefore, starting from these data, through artificial intelligence it will be possible to identify and suggest study methodologies and create specific support tools for each student that can enable her/him to achieve educational success in her/his academic career.
本研究旨在探索患有阅读障碍的大学生的学习经历,以及有助于他们在大学生涯中取得成功的因素。尽管在小学和中学阶段已经做出了很大的努力来诊断阅读障碍并减轻其影响,但在大学阶段,特别是在意大利的背景下,几乎没有采取任何措施。事实上,在大学环境中,支持工具的可用性和使用可能性,使学生能够取得教育成功,仍然不够充分。在本文中,我们使用了双变量关联测试和聚类分析,以确定最适合的补偿工具和支持策略,从而促进学生在高等教育中的表现。这些数据是通过意大利学生的自愿参与获得的,他们参加了本科课程,并经过了阅读障碍的认证诊断。通过聚类分析,我们确定了六个学生群体,为每个群体定义了特定的支持工具和学习策略。此外,通过创建这六个群体,可以描述“档案”,突出分析阅读障碍学生的学术生涯中的风险因素(诊断较晚)和/或保护因素(如协会、朋友和家人的支持)。因此,从这些数据出发,通过人工智能,可以识别并为每个学生建议学习方法,并为他们创建特定的支持工具,使他们能够在学术生涯中取得教育成功。